A digital content communication system for account management and predictive analytics may be provided. The system may include an analytics system that communicates with one or more servers and one or more data stores to provide digital content management in a network. The analytics system may include a data access interface to receive data associated with a customer, as well as a processor to: standardize the received data using a standardization technique; process the standardized data using a dark data processing technique; generate a customer fit score and a digital density score based on the dark data processing of the standardized data; match received data associated with a customer against at least one variable using at least one matching technique; create a lead analytical record (LAR); prioritize leads in the LAR using a predictive modeling technique; and establish optimized channel assignment based on at least one of the customer fit score, the digital intensity score, the LAR, or the matching and prioritization actions.
Legal claims defining the scope of protection, as filed with the USPTO.
1. A digital content management system, comprising: one or more data stores to store and manage data within a network; one or more servers to facilitate operations using information from the one or more data stores; an analytics system that communicates with the one or more servers and the one or more data stores to provide digital content management in the network, the analytics system comprising: a data access interface to: receive data associated with a customer, the data comprising at least one of client data, third party data, or dark data; a processor to: standardize the received data using a standardization technique; process the standardized data using a data processing technique; generate a customer fit score and a digital density score based on the data processing of the standardized data; match the received data associated with a customer against at least one variable using at least one matching technique; automatically create a lead analytical record based on the matching, wherein the lead analytical record comprises information associated with customer tendencies and customer network potential; prioritize leads in the lead analytical record using a predictive modeling technique, wherein the predictive modeling comprises at least one of collaborative filtering, iterative propensity modeling, segmentation, and comparison-based response modeling; and establish optimized channel assignment based on at least one of the customer fit score, the digital intensity score, the lead analytical record, or the matching and prioritization actions; and an output interface to transmit, to a user device, at least one of the customer fit score, digital intensity score, lead analytical record, or optimized channel assignment via a dashboard or report.
2. The system of claim 1 , wherein the client data is data that comprises limited attributes provided by a customer, the third party data is data available from a variety of third party vendors, and the dark data is data received from publicly available data sources.
3. The system of claim 1 , wherein the standardization technique comprises cleaning and forming according to rules for characters, spaces, abbreviations, symbols, or cases.
4. The system of claim 1 , wherein the data processing technique comprises: identifying a website; and using a web crawler to receive data associated to archetype, price points, pixels, and social badges.
7. The system of claim 1 , wherein the matching is based on data from different sources and interlinking.
8. The system of claim 1 , wherein the variable comprises at least one of name, zip code, website, email, web domain, email domain, phone number.
9. The system of claim 1 , wherein the matching comprises at least one of deterministic matching, probabilistic matching, and fuzzy matching.
10. A method for digital content management, comprising: receiving, at a processor, data associated with a customer, the data comprising at least one of client data, third party data, or dark data; standardizing the received data using a standardization technique; processing the standardized data using a data processing technique; generating a customer fit score and a digital density score based on the data processing of the standardized data; matching the data associated with a customer against at least one variable using at least one matching technique; automatically creating a lead analytical record based on the matching, wherein the lead analytical record comprises information associated with customer tendencies and customer network potential; prioritizing leads in the lead analytical record using a predictive modeling technique, wherein the predictive modeling comprises at least one of collaborative filtering, iterative propensity modeling, segmentation, and comparison-based response modeling; establishing optimized channel assignment based on at least one of the customer fit score, the digital intensity score, the lead analytical record, or the matching and prioritization actions; and transmitting, to a user device, at least one of the customer fit score, digital intensity score, lead analytical record, or optimized channel assignment via a dashboard or report.
11. The method of claim 10 , wherein the client data is data that comprises limited attributes provided by a customer, the third party data is data available from a variety of third party vendors, and the dark data is data received from publicly available data sources.
12. The method of claim 10 , wherein the standardization technique comprises cleaning and forming according to rules for characters, spaces, abbreviations, symbols, or cases.
13. The method of claim 10 , wherein the data processing technique comprises: identifying a website; and using a web crawler to receive data associated to archetype, price points, pixels, and social badges.
16. The method of claim 10 , wherein the matching is based on data from different sources and interlinking.
17. The method of claim 10 , wherein the matching comprises at least one of deterministic matching, probabilistic matching, and fuzzy matching.
18. A non-transitory computer-readable storage medium having an executable stored thereon, which when executed instructs a processor to perform the following actions: receive data associated with a customer, the data comprising at least one of client data, third party data, or dark data; standardize the received data using a standardization technique; process the standardized data using a data processing technique; generate a customer fit score and a digital density score based on the data processing of the standardized data; match the data associated with a customer against at least one variable using at least one matching technique; automatically create a lead analytical record based on the matching, wherein the lead analytical record comprises information associated with customer tendencies and customer network potential; prioritize leads in the lead analytical record using a predictive modeling technique, wherein the predictive modeling comprises at least one of collaborative filtering, iterative propensity modeling, segmentation, and comparison-based response modeling; establish optimized channel assignment based on at least one of the customer fit score, the digital intensity score, the lead analytical record, or the matching and prioritization actions; and transmit, to a user device, at least one of the customer fit score, digital intensity score, lead analytical record, or optimized channel assignment via a dashboard or report.
Cooperative Patent Classification codes for this invention. Click any code to explore related patents in that topic.
August 7, 2019
October 26, 2021
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